Department of Radiology, University of Michigan, Ann Arbor, Michigan; Department of Biomedical Engineering, University of Michigan, Ann Arbor, Michigan.
Lung Transplant Unit, Department of Chronic Diseases and Metabolism, Laboratory of Respiratory Diseases and Thoracic Surgery (BREATHE), KU Leuven, Leuven, Belgium; Department of ASTARC, University of Antwerp, Wilrijk, Belgium.
J Heart Lung Transplant. 2024 Mar;43(3):394-402. doi: 10.1016/j.healun.2023.09.018. Epub 2023 Sep 29.
Assessment and selection of donor lungs remain largely subjective and experience based. Criteria to accept or decline lungs are poorly standardized and are not compliant with the current donor pool. Using ex vivo computed tomography (CT) images, we investigated the use of a CT-based machine learning algorithm for screening donor lungs before transplantation.
Clinical measures and ex situ CT scans were collected from 100 cases as part of a prospective clinical trial. Following procurement, donor lungs were inflated, placed on ice according to routine clinical practice, and imaged using a clinical CT scanner before transplantation while stored in the icebox. We trained and tested a supervised machine learning method called dictionary learning, which uses CT scans and learns specific image patterns and features pertaining to each class for a classification task. The results were evaluated with donor and recipient clinical measures.
Of the 100 lung pairs donated, 70 were considered acceptable for transplantation (based on standard clinical assessment) before CT screening and were consequently implanted. The remaining 30 pairs were screened but not transplanted. Our machine learning algorithm was able to detect pulmonary abnormalities on the CT scans. Among the patients who received donor lungs, our algorithm identified recipients who had extended stays in the intensive care unit and were at 19 times higher risk of developing chronic lung allograft dysfunction within 2 years posttransplant.
We have created a strategy to ex vivo screen donor lungs using a CT-based machine learning algorithm. As the use of suboptimal donor lungs rises, it is important to have in place objective techniques that will assist physicians in accurately screening donor lungs to identify recipients most at risk of posttransplant complications.
目前,对供体肺的评估和选择在很大程度上仍然是主观的和基于经验的。接受或拒绝供体肺的标准尚未得到很好的标准化,也不符合当前的供体库。本研究使用体外 CT 图像,探讨了一种基于 CT 的机器学习算法在移植前筛选供体肺的应用。
本研究纳入了 100 例供体的临床指标和离体 CT 扫描数据,这些供体均来自一项前瞻性临床试验。供体肺获取后,根据常规临床实践进行充气,置于冰上,并在移植前使用临床 CT 扫描仪进行成像,同时储存在冰盒中。我们训练并测试了一种称为字典学习的有监督机器学习方法,该方法使用 CT 扫描并学习与每个类别相关的特定图像模式和特征,以完成分类任务。使用供体和受体的临床指标来评估结果。
在 100 对捐赠的肺中,有 70 对在 CT 筛查前被认为可接受移植(基于标准临床评估),随后被移植。其余 30 对经过筛查但未进行移植。我们的机器学习算法能够在 CT 扫描中检测到肺部异常。在接受供体肺的患者中,我们的算法识别出那些在重症监护病房停留时间较长、并且在移植后 2 年内发生慢性肺移植物功能障碍的风险高 19 倍的患者。
我们创建了一种使用基于 CT 的机器学习算法对供体肺进行离体筛查的策略。随着使用非最佳供体肺的增加,重要的是要采用客观技术,以帮助医生准确筛选供体肺,从而识别出最有可能发生移植后并发症的受者。